4 Papers
7 Citations
He Shen is an academic researcher from China Mobile Research Institute. The author has contributed to research in topics: Hyperparameter optimization & Login. The author has an hindex of 1, co-authored 4 publications.
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Papers
An Effective Cost-Sensitive XGBoost Method for Malicious URLs Detection in Imbalanced Dataset
TL;DR: Wang et al. as discussed by the authors proposed a cost sensitive XGBoost (CS-XGB) for the imbalanced data problem, which can reduce the classifiers' preference for most classes without changing the distribution of the original data.
Research on Malicious URL Detection Based on Feature Contribution Tendency
He Shen,Jun Xin,Peng Huaxi,Zhang Erpeng +3 more
- 24 Apr 2021
TL;DR: Wang et al. as mentioned in this paper optimized Random Forest based on feature contribution and hyperparameter optimization, and a large number of sample experiments showed that the detection efficiency of the model has been significantly improved.
5
Patent
safety login method, device and system
Peng Huaxi,He Shen,Zhang Erpeng +2 more
- 04 Jun 2014
TL;DR: In this paper, the authors proposed a safety login method, device and system, which comprises the following steps: receiving a login request sent by a target server, wherein the login request comprises source server identification and target server identification; judging whether the login requests accords with the server login sequences based on the source server ID and the target server ID.
4
Patent
Method, system and device for detecting communication service abnormal behavior
He Shen,Yang Kai,Yu Juanjuan,Yang Guanghua,Huang Xiaoqing,Deng Yan,Wei Na,Peng Huaxi,Zhang Erpeng +8 more
- 16 Apr 2014
TL;DR: In this paper, a method, system and device for detecting a communication service abnormal behavior is presented, which comprises the steps that a detection device is used for detecting flow of a rear-end exchanger of a node device; if the abnormal behavior was found, alarming information is sent to the node device, the node devices controls abnormality according to the alarming information.